Skip to main content
在 Manus 中运行任何 Skill
一键导入

bitsandbytes

星标2
分支0
更新时间2026年5月7日 11:40

Comprehensive reference documentation and skill for bitsandbytes, the k-bit quantization library for PyTorch enabling accessible large language models. Use this skill whenever the user mentions bitsandbytes, LLM.int8(), QLoRA, 4-bit quantization, 8-bit quantization, NF4, FP4, 8-bit optimizers, block-wise quantization, Int8Params, Params4bit, Linear8bitLt, Linear4bit, StableEmbedding, quantize_blockwise, dequantize_blockwise, quantize_4bit, dequantize_4bit, quantize_nf4, quantize_fp4, GlobalOptimManager, paged optimizers, FSDP integration with quantization, Triton kernels for quantization, CPU/XPU/MPS/HPU backends, CUDA kernels for quantized matmul, or bitsandbytes internals.

安装

用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。

文件资源管理器
19 个文件
SKILL.md
readonly